基于卷积神经网络的鸟类声音识别

Ágnes Incze, Henrietta-Bernadett Jancsó, Z. Szilagyi, Attila Farkas, Csaba Sulyok
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引用次数: 42

摘要

卷积神经网络(cnn)是一种强大的机器学习工具,在图像处理和声音识别领域已经被证明是有效的。本文提出了一种基于CNN的鸟类声音分类系统,并通过不同的配置和超参数对其进行了测试。MobileNet预训练的CNN模型使用从Xeno-canto鸟类歌曲共享门户获取的数据集进行微调,该门户提供了大量标记和分类的录音。从下载的数据生成的频谱图代表神经网络的输入。所附的实验比较了不同的结构,包括类别(鸟类)的数量和光谱图的配色方案。结果表明,选择与网络预先训练的图像一致的颜色映射提供了可测量的优势。所呈现的系统仅适用于少量的类。
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Bird Sound Recognition Using a Convolutional Neural Network
Convolutional neural networks (CNNs) are powerful toolkits of machine learning which have proven efficient in the field of image processing and sound recognition. In this paper, a CNN system classifying bird sounds is presented and tested through different configurations and hyperparameters. The MobileNet pre-trained CNN model is fine-tuned using a dataset acquired from the Xeno-canto bird song sharing portal, which provides a large collection of labeled and categorized recordings. Spectrograms generated from the downloaded data represent the input of the neural network. The attached experiments compare various configurations including the number of classes (bird species) and the color scheme of the spectrograms. Results suggest that choosing a color map in line with the images the network has been pre-trained with provides a measurable advantage. The presented system is viable only for a low number of classes.
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